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首页> 外文期刊>SIAM Journal on Numerical Analysis >ALMOST SURE AND MOMENT EXPONENTIAL STABILITY IN THE NUMERICAL SIMULATION OF STOCHASTIC DIFFERENTIAL EQUATIONS
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ALMOST SURE AND MOMENT EXPONENTIAL STABILITY IN THE NUMERICAL SIMULATION OF STOCHASTIC DIFFERENTIAL EQUATIONS

机译:随机微分方程数值模拟中的几乎确定和矩指数稳定性

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摘要

Relatively little is known about the ability of numerical methods for stochastic differential equations (SDEs) to reproduce almost sure and small-moment stability. Here, we focus on these stability properties in the limit as the timestep tends to zero. Our analysis is motivated by an example of an exponentially almost surely stable nonlinear SDE for which the Euler–Maruyama (EM) method fails to reproduce this behavior for any nonzero timestep. We begin by showing that EM correctly reproduces almost sure and small-moment exponential stability for sufficiently small timesteps on scalar linear SDEs. We then generalize our results to multidimensional nonlinear SDEs. We show that when the SDE obeys a linear growth condition, EM recovers almost surely exponential stability very well. Under the less restrictive condition that the drift coefficient of the SDE obeys a one-sided Lipschitz condition, where EM may break down, we show that the backward Euler method maintains almost surely exponential stability.
机译:对于随机微分方程(SDE)的数值方法重现几乎确定的矩矩稳定性的能力,人们所知甚少。在这里,我们将重点放在极限稳定性上,因为时间步长趋于零。我们的分析是基于一个指数几乎确定稳定的非线性SDE的例子,对于该例子,Euler–Maruyama(EM)方法无法在任何非零时间步长上重现此行为。我们首先显示,对于标量线性SDE上足够短的时间步长,EM可以正确地重现几乎确定的矩矩稳定性。然后,我们将结果推广到多维非线性SDE。我们表明,当SDE服从线性增长条件时,EM几乎可以肯定地很好地恢复指数稳定性。在SDE的漂移系数服从EM可能会破裂的单边Lipschitz条件的限制性较小的条件下,我们证明了向后欧拉方法几乎可以肯定地保持指数稳定性。

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